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High-dimensional numerical optimization and sampling toolkit for complex, non-differentiable problems.

Project description

hdim-opt: High-Dimensional Optimization Toolkit

Modern optimization package to accelerate convergence in complex, high-dimensional problems. Includes the QUASAR evolutionary algorithm, HDS exploitative QMC sampler, Sobol sensitivity analysis, signal waveform decomposition, and data transformations.

All core functions, listed below, are single-line executable and require three essential parameters: [obj_function, bounds, n_samples]:

  • quasar: QUASAR optimization for high-dimensional problems.

  • hyperellipsoid: Generate a non-uniform hyperellipsoid density sequence.

  • sensitivity: Sensitivity analysis to quantify each variable's influence on the objective (via SALib).

  • lorentzian: Fit a Lorentzian/Cauchy kernel density estimation to the data ensemble.

  • isotropize/deisotropize: Isotropize the input data using zero-phase component analysis (ZCA).

  • waveform: Decompose the input waveform signal array into a diagnostic summary.


Installation

Installed via hdim_opt directly from PyPI:

pip install hdim_opt

Example Usage:

import hdim_opt as h

# Parameter Space
n_dimensions = 30
bounds = [(-100,100)] * n_dimensions
n_samples = 1000
obj_func = h.test_functions.rastrigin

# Optimization
solution, fitness = h.quasar(obj_func, bounds)
sens_matrix = h.sensitivity(obj_func, bounds)

# Sampling
hds_samples = h.hyperellipsoid(n_samples, bounds)
iso_samples, params = h.isotropize(hds_samples)
kde = h.lorentzian(solution, 3.0, iso_samples)

# Waveform
t, signal = h.waveform_analysis.e1_waveform(noise=0.1)
summary = h.waveform(t,signal)

QUASAR Optimizer

QUASAR (Quasi-Adaptive Search with Asymptotic Reinitialization) is a quantum-inspired evolutionary algorithm, highly efficient for minimizing high-dimensional, non-differentiable, and non-parametric objective functions.

  • Benefit: Significant improvements in convergence speed and solution quality compared to contemporary optimizers. (Reference: [https://arxiv.org/abs/2511.13843]).

HDS Sampler

HDS (Hyperellipsoid Density Sampling) is a non-uniform Quasi-Monte Carlo sampling method, specifically designed to exploit promising regions of the search space.

  • Benefit: Provides control over the sample distribution. Results in higher average optimization solution quality when used for population initialization compared to uniform QMC methods. (Reference: [https://arxiv.org/abs/2511.07836]).

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